Senior Product Manager, Images Feed Quality, Google Search

Google Google · Big Tech · Mountain View, CA +2

Product Manager for Google Images Feed Quality, focusing on personalization and quality of AI-driven visual discovery experiences. This role bridges AI research and production, involving personalization systems, evaluation frameworks, and collaboration on state-of-the-art modeling techniques for recommendation and feed growth.

What you'd actually do

  1. Oversee secure, privacy-compliant systems that dynamically surface relevant user data to ground and personalize AI responses.
  2. Lead the "Quality Hillclimbing" roadmap, balancing high-quality personalization metrics against feed load latency to ensure optimal speed.
  3. Develop context-specific autoraters and evaluation frameworks to continuously measure AI accuracy, helpfulness, and performance.
  4. Define intelligence strategies that leverage search interactions to build a continuously evolving, consistent understanding of user preferences.
  5. Collaborate on technical strategies utilizing state-of-the-art modeling techniques (e.g., Gemembed, Generative Retrieval) to advance the recommendation stack and feed growth.

Skills

Required

  • product management
  • technical products from conception to launch
  • software engineering for recommendation systems or feed ranking architectures

Nice to have

  • Master's degree in a technology or business related field
  • working cross-functionally with engineering, UX/UI, sales finance, and other stakeholders
  • business function or role (e.g., strategic marketing, business operations, consulting)
  • preparing and delivering technical presentations to senior leadership
  • translating advanced machine learning research into highly stable, consumer-facing feeds and recommendation products at global scale
  • Deep technical understanding of retrieval, ranking techniques, value modeling, and the nuances of large-scale recommendation systems

What the JD emphasized

  • deep expertise across the AI stack
  • bridge the gap between frontier AI research and production at scale
  • grounding, retrieval strategies, and evaluation frameworks
  • experience in software engineering for recommendation systems or feed ranking architectures
  • Experience translating advanced machine learning research into highly stable, consumer-facing feeds and recommendation products at global scale
  • Deep technical understanding of retrieval, ranking techniques, value modeling, and the nuances of large-scale recommendation systems

Other signals

  • AI product development
  • recommendation systems
  • personalization
  • evaluation frameworks
  • large-scale systems